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QA/QC: challenges and pitfalls facing the microarray community and regulatory agencies.

机译:QA / QC:微阵列社区和监管机构面临的挑战和陷阱。

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The scientific community has been enthusiastic about DNA microarray technology for pharmacogenomic and toxicogenomic studies in the hope of advancing personalized medicine and drug development. The US Food and Drug Administration has been proactive in promoting the use of pharmacogenomic data in drug development and has issued a draft guidance for the pharmaceutical industry on data submissions. However, many challenges and pitfalls are facing the microarray community and regulatory agencies before microarray data can be reliably applied to support regulatory decision making. Four types of factors (i.e., technical, instrumental, computational and interpretative) affect the outcome of a microarray study, and a major concern about microarray studies has been the lack of reproducibility and accuracy. Intralaboratory data consistency is the foundation of reliable knowledge extraction and meaningful crosslaboratory or crossplatform comparisons; unfortunately, it has not been seriously evaluated and demonstrated in every study. Profound problems in data quality have been observed from analyzing published data sets, and many laboratories have been struggling with technical troubleshooting rather than generating reliable data of scientific significance. The microarray community and regulatory agencies must work together to establish a set of consensus quality assurance and quality control criteria for assessing and ensuring data quality, to identify critical factors affecting data quality, and to optimize and standardize microarray procedures so that biologic interpretation and decision-making are not based on unreliable data. These fundamental issues must be adequately addressed before microarray technology can be transformed from a research tool to clinical practices.
机译:科学界一直对用于药物基因组学和毒物基因组学研究的DNA微阵列技术充满热情,希望促进个性化医学和药物开发。美国食品和药物管理局一直积极促进在药物开发中使用药物基因组学数据,并针对数据提交发布了针对制药行业的指导草案。但是,在微阵列数据能够可靠地用于支持监管决策之前,微阵列社区和监管机构面临许多挑战和陷阱。四种类型的因素(即技术,仪器,计算和解释性)会影响微阵列研究的结果,而对微阵列研究的主要关注是缺乏可重复性和准确性。实验室内数据的一致性是可靠的知识提取和有意义的跨实验室或跨平台比较的基础;不幸的是,它没有在每项研究中得到认真的评估和证明。通过分析已发布的数据集,已经观察到数据质量方面的深刻问题,许多实验室一直在努力进行技术故障排除,而不是生成具有科学意义的可靠数据。微阵列社区和监管机构必须共同努力,以建立一套一致的质量保证和质量控制标准,以评估和确保数据质量,确定影响数据质量的关键因素,并优化和标准化微阵列程序,以便进行生物学解释和决策。并非基于不可靠的数据。在将微阵列技术从研究工具转变为临床实践之前,必须充分解决这些基本问题。

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